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Author Spotlight: Investigating the Impact of Emotional Prosodies on Voice Recognition and Perception
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Robust Multi-Scenario Speech-Based Emotion Recognition System.

Fangfang Zhu-Zhou1, Roberto Gil-Pita1, Joaquín García-Gómez1

  • 1Department of Signal Theory and Communications, University of Alcalá, 28805 Alcalá de Henares, Madrid, Spain.

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Summary
This summary is machine-generated.

This study reveals that simulated emotional speech data significantly degrades emotional speech recognition (ESR) system performance. Real-world noise and reverberation drastically increase error rates, highlighting the need for robust, multi-scenario systems.

Keywords:
affective computingemotion recognitionspeech emotions

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Area of Science:

  • Speech processing
  • Affective computing
  • Machine learning

Background:

  • Human emotions are daily experiences often conveyed through speech.
  • Existing acoustic emotional speech databases frequently lack real-world conditions, using acted emotions and no noise.
  • Limited data patterns in current databases lead to generalization issues and overfitting in emotion recognition systems.

Purpose of the Study:

  • To investigate the impact of environmental factors like noise and reverberation on emotional speech recognition (ESR) system performance.
  • To propose a robust multi-scenario system and a virtual enlargement method to improve ESR in realistic conditions.

Main Methods:

  • Experiments were conducted using logistic regression to simulate various environmental conditions.
  • Scenarios included different levels of Gaussian white noise, real-world noise, and reverberation.
  • A virtual enlargement method was employed to enhance the robustness of the proposed system.

Main Results:

  • System performance deteriorated significantly under all tested environmental conditions.
  • Error probability increased from 25.57% to a worst-case 79.13% due to simulated noise and reverberation.
  • The proposed robust system achieved an average error probability of 34.57%, comparable to ideal conditions (31.55%).

Conclusions:

  • Simulated emotional speech databases do not adequately represent real-world scenarios, impacting system reliability.
  • Environmental factors like noise and reverberation are critical challenges for accurate speech-based emotion recognition.
  • The developed robust multi-scenario system demonstrates improved performance in handling diverse and challenging acoustic environments.